Detect SIM-box bypass fraud in telecom networks using CDR analysis — 5 behavioural indicators, risk scoring, EDA notebook & optional Isolation Forest. Built with pandas.
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Updated
Jun 7, 2026 - Python
Detect SIM-box bypass fraud in telecom networks using CDR analysis — 5 behavioural indicators, risk scoring, EDA notebook & optional Isolation Forest. Built with pandas.
Explainable AI-powered telecom fraud detection system using Random Forest, Isolation Forest, Rule-Based Intelligence, SHAP Explainability, FastAPI, and Streamlit Dashboard for real-time fraud risk assessment.
Telecom Fraud Detection: SMS Spam Classifier built with Python, Scikit-learn, and Streamlit. Achieves ~98% accuracy using TF-IDF + Naive Bayes. Includes EDA, fraud trend visualization, and real-time prediction app.
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